Proteins are essential components of living systems, capable of performing a huge variety of tasks at the molecular level, such as recognition, signalling, copy, transport, ... The protein sequences realizing a given function may largely vary across organisms, giving rise to a protein family. Here, we estimate the entropy of those families based on different approaches, including Hidden Markov Models used for protein databases and inferred statistical models reproducing the low-order (1- and 2-point) statistics of multi-sequence alignments. We also compute the entropic cost, that is, the loss in entropy resulting from a constraint acting on the protein, such as the mutation of one particular amino-acid on a specific site, and relate this no...
In this paper, entropy and auto-correlation values of main chain dihedral angles of 22,356 protein m...
[[abstract]]We developed a technique to compute structural entropy directly from protein sequences. ...
We have developed an approach based on information theory to compute the structural information cont...
to appear in Journal of Statistical PhysicsProteins are essential components of living systems, capa...
We investigated the correlation between the Shannon information entropy, ‘sequence entropy’, with re...
A comprehensive data base is analyzed to determine the Shannon information content of a protein sequ...
I propose a new method to calculate the entropy of a given protein sequence fragment. The set of fra...
The Shannon entropy equation provides a way to estimate variability of amino acids sequences in a mu...
<p>Shannon entropy was assessed for full length protein sequences of clades A1, C, and D available f...
Estimation of configurational entropy from molecular dynamics trajectories is a difficult task which...
We introduce sequence entropy-variability plots as a method of analyzing families of protein sequenc...
The 20 protein-coding amino acids are found in proteomes with different relative abundances. Themost...
Background: Analyzing the local sequence content in proteins, earlier we found that amino acid resid...
We have developed a general method to compute the structure entropy of protein sequences. Structure ...
The 20 protein-coding amino acids are found in proteomes with different relative abundances. The mos...
In this paper, entropy and auto-correlation values of main chain dihedral angles of 22,356 protein m...
[[abstract]]We developed a technique to compute structural entropy directly from protein sequences. ...
We have developed an approach based on information theory to compute the structural information cont...
to appear in Journal of Statistical PhysicsProteins are essential components of living systems, capa...
We investigated the correlation between the Shannon information entropy, ‘sequence entropy’, with re...
A comprehensive data base is analyzed to determine the Shannon information content of a protein sequ...
I propose a new method to calculate the entropy of a given protein sequence fragment. The set of fra...
The Shannon entropy equation provides a way to estimate variability of amino acids sequences in a mu...
<p>Shannon entropy was assessed for full length protein sequences of clades A1, C, and D available f...
Estimation of configurational entropy from molecular dynamics trajectories is a difficult task which...
We introduce sequence entropy-variability plots as a method of analyzing families of protein sequenc...
The 20 protein-coding amino acids are found in proteomes with different relative abundances. Themost...
Background: Analyzing the local sequence content in proteins, earlier we found that amino acid resid...
We have developed a general method to compute the structure entropy of protein sequences. Structure ...
The 20 protein-coding amino acids are found in proteomes with different relative abundances. The mos...
In this paper, entropy and auto-correlation values of main chain dihedral angles of 22,356 protein m...
[[abstract]]We developed a technique to compute structural entropy directly from protein sequences. ...
We have developed an approach based on information theory to compute the structural information cont...